Laboratory for Language Development, RIKEN Center for Brain Science.
Phonetics Workgroup, Faculty of Linguistics and Literary Studies, Bielefeld University.
Cogn Sci. 2021 May;45(5):e12946. doi: 10.1111/cogs.12946.
A prominent hypothesis holds that by speaking to infants in infant-directed speech (IDS) as opposed to adult-directed speech (ADS), parents help them learn phonetic categories. Specifically, two characteristics of IDS have been claimed to facilitate learning: hyperarticulation, which makes the categories more separable, and variability, which makes the generalization more robust. Here, we test the separability and robustness of vowel category learning on acoustic representations of speech uttered by Japanese adults in ADS, IDS (addressed to 18- to 24-month olds), or read speech (RS). Separability is determined by means of a distance measure computed between the five short vowel categories of Japanese, while robustness is assessed by testing the ability of six different machine learning algorithms trained to classify vowels to generalize on stimuli spoken by a novel speaker in ADS. Using two different speech representations, we find that hyperarticulated speech, in the case of RS, can yield better separability, and that increased between-speaker variability in ADS can yield, for some algorithms, more robust categories. However, these conclusions do not apply to IDS, which turned out to yield neither more separable nor more robust categories compared to ADS inputs. We discuss the usefulness of machine learning algorithms run on real data to test hypotheses about the functional role of IDS.
一个主要的假设认为,与成人导向的言语(ADS)相比,父母用婴儿导向的言语(IDS)与婴儿交流,有助于他们学习语音类别。具体来说,IDS 的两个特征被认为有助于学习:超音段,使类别更可分离,变异性,使泛化更稳健。在这里,我们在日本成年人在 ADS、IDS(面向 18 至 24 个月的婴儿)或阅读言语(RS)中发出的言语的声学表示上测试元音类别学习的可分离性和稳健性。可分离性通过计算日语的五个短元音类之间的距离度量来确定,而稳健性则通过测试经过训练以分类元音的六种不同机器学习算法在 ADS 中使用新说话者的刺激进行泛化的能力来评估。使用两种不同的语音表示,我们发现,在 RS 的情况下,超音段语音可以产生更好的可分离性,而 ADS 中增加的说话者间变异性可以使某些算法产生更稳健的类别。然而,这些结论不适用于 IDS,与 ADS 输入相比,IDS 既没有产生更可分离的类别,也没有产生更稳健的类别。我们讨论了在真实数据上运行机器学习算法来测试关于 IDS 的功能作用的假设的有用性。